Machine Learning Interatomic Potential for Molten TiZrHfNb

被引:6
|
作者
Balyakin, I. A. [1 ]
Rempel, A. A.
机构
[1] Inst Met UB RAS, Ekaterinburg 620016, Russia
关键词
HIGH-ENTROPY ALLOY; PHASE; STABILITY;
D O I
10.1063/5.0032302
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
High-entropy alloys (HEAs) are relatively new class of materials with promising functional and mechanical properties. These alloys contain multiple elements with equi- or almost equiatomic concentrations and should represent random solid solution. Therefore, in HEAs, several different chemical elements coexist in one phase. Interaction between multiple species in one phase is of interest, since understanding of features of this interactions can provide understanding of thermodynamics stability of such systems. As far as properties of solid alloy are connected with properties of its melt, it is reasonable to start the investigation of particular multi-component system from liquid state. However, the problem of describing of potential energy surface (PES) for metals is especially vexing. For solving this problem here we applied machine learning technique, namely DEEPMD approach, for developing neural-network potential (NNP) for molten TiZrHfNb as an example of multi-component system. Training set was generated using oh initio molecular dynamics (AIMD) trajectories. Validation of the potential was performed by comparing of partial radial distribution functions (PRDFs) obtained by AIMD and DEEPMD methods. Analysis of PRDFs allowed to conclude that TiZrHfNb system is very likely to form single-phase random solid solution.
引用
收藏
页数:6
相关论文
共 50 条
  • [1] DFT Accurate Interatomic Potential for Molten NaCl from Machine Learning
    Tovey, Samuel
    Krishnamoorthy, Anand Narayanan
    Sivaraman, Ganesh
    Guo, Jicheng
    Benmore, Chris
    Heuer, Andreas
    Holm, Christian
    JOURNAL OF PHYSICAL CHEMISTRY C, 2020, 124 (47): : 25760 - 25768
  • [2] Machine learning for interatomic potential models
    Mueller, Tim
    Hernandez, Alberto
    Wang, Chuhong
    JOURNAL OF CHEMICAL PHYSICS, 2020, 152 (05):
  • [3] Development of machine learning interatomic potential for zinc
    Mei, Haojie
    Cheng, Luyao
    Chen, Liang
    Wang, Feifei
    Li, Jinfu
    Kong, Lingti
    COMPUTATIONAL MATERIALS SCIENCE, 2024, 233
  • [4] An accurate and transferable machine learning interatomic potential for nickel
    Gong, Xiaoguo
    Li, Zhuoyuan
    Pattamatta, A. S. L. Subrahmanyam
    Wen, Tongqi
    Srolovitz, David J.
    COMMUNICATIONS MATERIALS, 2024, 5 (01)
  • [5] A machine learning interatomic potential for high entropy alloys
    Wu, Lianping
    Li, Teng
    JOURNAL OF THE MECHANICS AND PHYSICS OF SOLIDS, 2024, 187
  • [6] Deep machine learning interatomic potential for liquid silica
    Balyakin, I. A.
    Rempel, S., V
    Ryltsev, R. E.
    Rempel, A. A.
    PHYSICAL REVIEW E, 2020, 102 (05)
  • [7] Machine learning based interatomic potential for amorphous carbon
    Deringer, Volker L.
    Csanyi, Gabor
    PHYSICAL REVIEW B, 2017, 95 (09)
  • [8] Machine Learning a General-Purpose Interatomic Potential for Silicon
    Bartok, Albert P.
    Kermode, James
    Bernstein, Noam
    Csanyi, Gabor
    PHYSICAL REVIEW X, 2018, 8 (04):
  • [9] Machine learning interatomic potential for simulations of carbon at extreme conditions
    Willman, Jonathan T.
    Nguyen-Cong, Kien
    Williams, Ashley S.
    Belonoshko, Anatoly B.
    Moore, Stan G.
    Thompson, Aidan P.
    Wood, Mitchell A.
    Oleynik, Ivan I.
    PHYSICAL REVIEW B, 2022, 106 (18)
  • [10] Thermosalient Phase Transitions from Machine Learning Interatomic Potential
    Mladineo, Bruno
    Loncaric, Ivor
    CRYSTAL GROWTH & DESIGN, 2024, 24 (20) : 8167 - 8173